the dark side of independent venture capitalists
TRANSCRIPT
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The dark side of independent venture capitalists: Evidence from Japan
Yue Sun Graduate School of Economics, Kyushu University
6-19-1, Hakozaki, Higashiku, Fukuoka 812-8581 JAPAN
Tel.: +81-92-642-8861 E-mail: [email protected]
Konari Uchida*
Faculty of Economics, Kyushu University
6-19-1, Hakozaki, Higashiku, Fukuoka 812-8581 JAPAN
Tel. and Fax: +81-92-642-2357 E-mail: [email protected]
Mamoru Matsumoto
Faculty of Economics and Business Administration, The University of Kitakyushu 4-2-1, Kitagata, Kokuraminamiku, Kitakyushu 802-8577 JAPAN
Tel.: +81-93-588-5506 E-mail: [email protected]
Abstract
Using Japanese firms that went public during 1998 – 2006, we find that independent venture capitalists-backed IPO firms are significantly younger and smaller than IPO companies backed by venture capital firms that are subsidiaries of financial institutions. Independent venture capitalists tend to make firms go public on stock exchanges with less strict listing requirements. Importantly, young and small IPO firms listed on exchanges with less strict requirements experience significantly larger underpricing and poorer long-term performance. Those results suggest that finance-affiliated venture capitalists are less myopic and prohibit immature firms from going public. JEL Classification: G24; G32 Key words: Venture capitalist; Grandstanding; IPO; Underpricing; Long-term performance * Corresponding author is Konari Uchida. Faculty of Economics, Kyushu University, 6-19-1, Hakozaki, Higashiku, Fukuoka 812-8581 JAPAN. Tel. and Fax: +81-92-642-2463 E-mail: [email protected]
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1. Introduction Diversifications by financial institutions potentially engender conflict of interests as well as certification effects. This idea has motivated previous studies to extensively investigate consequences of bank entry in underwriting and securities businesses (Kroszner and Rajan , 1994; Puri, 1994, 1996; Gande et al., 1997; Konishi, 2000; Takaoka and McKenzie, 2006; Kang and Liu, 2007). Puri (1994, 1996) investigates the US bond market before the Glass-Steagall and present evidence of the certification hypothesis.1 In contrast, Kang and Liu (2007) find that as Japanese banks enter the securities businesses, they discount the prices of corporate bonds to attract investors, thereby generates conflicts of interests that are harmful to issuers.2
The outcome of financial institutions' diversification has been also investigated for the corporate initial public offering (IPO) process. In several non-US countries like Germany and Japan, banks and securities firms entry in venture capital industry and help young and emerging companies go public (Black and Gilson, 1998; Hamao et al., 2000; Wang et al., 2002). It is well-documented that venture capitalists (hereafter denoted by VCs) provide monitoring and supports in various aspects of management to young and immature firms; as a result, VCs potentially have certification effects (Gorman and Sahlman, 1989; Lerner, 1994; Lerner, 1995; Gompers, 1995; Hellmann and Puri, 2002; Hsu, 2004; Baum and Silverman, 2004). Numerous empirical studies show evidence that VC-backed IPOs experience less underpricing and better long-term performance (Barry et al., 1990; Megginson and Weiss, 1991; Jain and Kini, 1995; Cai and Wei, 1997; Brav and Gompers, 1997). The certification hypothesis gives rise to a prediction that bank-affiliated VCs that can use information accumulated by the parent bank have stronger certification effects. However, existing works present evidence that independent VCs (hereafter denoted by IVCs) add more values to emerging firms than do finance-affiliated VCs (Gompers and Lerner, 2000; Van Osnabrugge and Robinson, 2001; Wang et al., 2002; Tykvova and Walz, 2007). Specifically, IVC-backed IPO firms experience smaller underpricing (Wang et al., 2002) and better long-term performance
1 The certification hypothesis is also supported by several researchers (Gande et al., 1997; Kroszner and Rajan, 1994; Konishi, 2002). 2 Bank entry into underwriting business potential generates various outcomes. Gande et al. (1999) find that underwriter spreads and ex-ante yields have declined significantly with bank entry, suggesting that bank entry makes the underwriting market more competitive. Takaoka and McKenzie (2006) find that the entry of bank subsidiaries into the Japanese underwriting market for straight corporate bonds has led to a significant reduction in underwriting commissions. Yasuda (2005) finds that there is a significant fee discount when there are relationships between bond issuing firms and commercial banks that underwrite the issue.
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than those backed by non-independent venture capitalists (Hamao et al., 2000; Wang et al., 2002; Tykvova and Walz, 2007). Hamao et al. (2000) argue that conflict of interests exist when the lead VC serves as the lead underwriter during the IPO process.
This paper is principally intended to present a new aspect of finance-affiliated VCs (hereafter denoted by FVCs). In other words, we attempt to show dark side of IVCs from a viewpoint of reputation incentives. In general, firms must perform well and thereby establish reputation to access to external financing (Diamond, 1989; Chevalier and Ellison, 1997; Sirri and Tufano, 1998). The importance of reputation will hold true for VCs that seek financing from external capital markets (Sahlman, 1990). Gompers (1996) argues that young VCs with low reputation tend to make immature firms go public for the sake of establishing their own reputation (grandstanding hypothesis). As with young VCs, IVCs are likely to have a strong incentive to improve their reputation because they typically create limited partnership funds and need to regularly finance for new funds (Wang et al., 2002). Importantly, IVCs have to rely on external capital markets because they have no affiliations with financial institutions. In contrast, FVCs mainly finance from their parent institutions (or internal capital market) and have less necessity of external financing. The difference in financing environments is likely to affect VCs' grandstanding incentives.
We use Japanese firms that went public during 1998 – 2006 to investigate whether IVCs have an incentive to grandstand compared to FVCs. In Japan, there are many venture capitalist firms that are subsidiaries of financial institutions as well as independent venture capitalists. This environment is an appropriate material to investigate how FVCs and IVCs behave in different ways. In addition, there had been three stock exchanges for emerging companies in Japan (JASDAQ, MOTHERS, and HERCULES). Two of the three exchanges (MOTHERS and HERCULES), which are established for the sake of providing emerging companies with financing opportunities, have less strict listing requirements. The difference in listing requirements allows us to test the grandstanding hypothesis by investigating the choice of listing exchange.
Our empirical analyses show that IVC-backed IPO firms are significantly younger and smaller than FVC-backed IPO companies. We also find IVC-backed IPO companies tend to choose a stock exchange with less strict listing requirements (MOTHERS and HERCULES) than FVC-backed firms. Those results are consistent with the idea that independent venture capitalists have a grandstanding incentive. In addition, young and small IPO firms listed on MOTHERS and HERCULES experience significantly larger underpricing and poorer long-term performance. A two-stage least squares (2SLS) regression suggests that IVCs suffer from large underpricing and poor long-term
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performance of IPO companies as a result of making young and small companies go public. Those results provide clear evidence that IVCs bear costs that are attributable to their grandstanding behaviors.
The presented research has several important contributions to the literature. First, we present new evidence regarding the outcome of financial institutions' diversification. Affiliations with financial institutions substantially change VCs' behaviors and FVCs that have access to internal capital markets are less myopic and watch over young companies growing up to deserve listing. Entry of banks and securities firms into venture capital industry will effectively protect immature companies from going public. Secondly, we show dark side (grandstanding) of IVCs that have been viewed as an active investor in previous studies (Hamao et al., 2000; Wang et al., 2002; Tykvova and Walz, 2007). Finally, our results serve as additional evidence of grandstanding hypothesis for venture capitals (Gompers, 1996; Wang et al., 2003). We support the hypothesis by using the difference in characteristics between independent venture capitalists and finance-affiliated venture capital firms.
The rest of the paper is organized as follows. Section 2 presents hypothesis developments. Section 3 describes sample selection procedures and data. Section 4 presents empirical results. Section 5 is brief summary of this research. 2. Hypothesis developments Most VCs raise money in limited partnerships that have pre-determined lifetimes. This characteristic forces VCs to regularly finance from external capital markets to launch new funds. Sahlman (1990) argues that VCs with good reputation can access to low-cost capital easily. As a result, VCs have a strong incentive to improve their reputation. Especially, young VCs with low reputation are likely to make immature firms go public to establish their own reputation (Gompers, 1996). Indeed, Gompers (1996) shows evidence that IPO companies backed by young venture capitals experience large underpricing. Wang et al. (2003) find that IPO firms involved with young VCs show poor long-term performance.
Previous studies suggest that IVCs have effective monitoring and certification effects; IVCs also support emerging companies in various aspects of management (Gompers and Lerner, 2000; Hamao et al., 2000; Tykvova and Walz, 2007; Van Osnabrugge and Robinson, 2001; Wang et al., 2002). IPOs backed by securities firm-affiliated VCs (hereafter denoted by SFVCs) are usually underwritten by the VC’s parent company. This situation generates conflicts of interests and the underwriters will set high offering price to increase their fee revenues. As a result, those IPOs are likely to show poor long-term performance (Hamao et al., 2000). IPOs backed by bank-affiliated VCs
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(hereafter denoted by BVCs) are also likely to face to conflicts of interests. Ber et al. (2001) argue that universal banks use their superior information regarding client firms to float the stock price of Israeli IPO companies. Hellmann et al. (2008) show evidence that banks have an incentive to establish lending relationships with unlisted companies. VCs’ parent companies (banks) potentially have an incentive to prevent young and growing companies from undertaking risky projects to keep their creditor value.
Apart from the conflict of interests, FVCs may have good aspects in firms' IPO process. FVCs can rely on internal capital markets to create new funds. Especially in Japan, many venture capital firms are FVCs and mainly rely on financing from the parent institution. Hamao et al. (2000) show that in Japan 210 firms went public with venture capital backing during 1989 – 1995 that include 170 IPOs backed by FVCs. Mayer et al. (2005) suggest that Japanese bank-affiliated venture capital firms are owned mainly by the parent bank and its affiliated companies. In contrast, IVCs that cannot access to internal capital markets are forced to use external financing. Those facts give rise to the hypothesis that IVCs have a stronger incentive to grandstand (make immature firms go public) to improve their own reputation than do FVCs. We use firm age (the length of years between foundation and listing) and size (book value of assets at the time of IPO) as a proxy variable for IPO firms' immatureness. In addition, we investigate the IPO firm’s choice of listing stock exchange to test the grandstanding hypothesis. As mentioned, there had been three stock exchanges in Japan for emerging companies to initially go public. JASDAQ originates in Japanese over-the counter market (formulated in 1963) and the Japanese Securities and Exchange Act has treated it as a counterpart of stock exchange since December 1998; it formally became stock exchange in December 2004. MOTHERS and HERCULES were founded in 1999 and 2000, respectively for the sake of providing emerging companies with an opportunity of listing.3 JASDAQ with a long history is the most reputable market for emerging companies in Japan and has most strict listing requirements. For example, firms are required to have net assets of JPY 200 million or larger and report net income of JPY 100 million or higher to list on JASDAQ. In contrast, MOTHERS and HERCULES that are founded to provide more listing opportunities to emerging companies have no effective requirements on net income. HERCULES presents requirements on net assets, but it is much looser than the JASDAQ's requirements (firms are required to report non-negative net assets).4
3 HERCULES was merged with JASDAQ in 2010.
If IVCs have an incentive to
4 HERCULES have several different requirements, one of which listing firms can choose. The most loose requirement (Standard 3) asks listing firms to have non-negative
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make immature firms go public, they will prefer MOTHERS and HERCULES to JASDAQ as listing place. To test this idea, we make a dummy variable that takes a value of one for IPOs listed on JASDAQ and zero for those on MOTHERS and HERCULES (D_Market) (See Table 1 for definition of variables). Those discussions are summarized as the following hypothesis. Hypothesis 1: IVC-backed IPO firms are younger and smaller than FVC-backed IPO firms. IVC-backed IPO firms tend more to choose MOTHERS and HERCULES for listing exchange than FVC-backed IPO firms.
[Insert Table 1 about here] It should be noted that Hypothesis 1 is consistent not only with the grandstanding
hypothesis but also with the idea that IVCs enable emerging companies go public in more early stages through their effective monitoring and certification effects. In other words, we need to test the validity of our measures of firms’ immatureness (firm age, size, and listing exchange choice) to accurately test the grandstanding hypothesis. Hypothesis 2: Firm size and age are negatively related to underprincing and positively associated with long-term performance. IPO firms that list on JASDAQ experience smaller underperpricing and better long-term performance than those listed on MOTHERS and HERCULES. 3. Sample selection and data We select sample companies from Japanese firms that went public in JASDAQ, MOTHERS, and HERCULES during 1998–2006. We collected ownership structure of those companies from Japanese IPO White Paper and define firms owned by VCs as venture capital-backed IPOs (hereafter denoted by VC-backed IPOs). Barry et al. (1990) and Tykvova and Walz (2007) suggest that the largest shareholder among VCs is usually viewed as the lead venture capital and play a central role in monitoring and supporting the company. For VC-backed IPOs, we identify the affiliation of the lead venture capital by using Handbook of Venture Capital issued by Venture Enterprise Center and websites of VCs. We delete IPO companies for which necessary data is not available from the analysis. As a result, there are 410 IPO companies that have a FVC as their lead venture capital and 58 IPO firms that have an IVC as their lead venture capital. We adopt those IPO firms as our sample companies as well as 242 non-VC-backed IPOs; as a result, our entire sample consists of 710 IPOs. We obtain financial data of IPO companies from Nikkei NEEDS Financial Quest and stock return data from Nikkei NEEDS Portfolio Master.
Previous studies suggest that underpricing of IPO stocks increases with information net assets, but has no requirements on net income.
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asymmetry (Rock, 1986; Barry et al., 1990; Carter and Manaster, 1990). Following Gompers (1996), we use the underpricing (closing price of initial trading day minus offering price divided by offering price) as a measure of the cost of grandstanding. Previous studies find long-term operating underperformance during a few years following IPOs (Jain and Kini, 1994; Jain and Kini, 1995; Cai and Wei, 1997; Mikkelson et al., 1997; Chan et al., 2004). We adopt the industry-adjusted ROA (IPO firm’s ROA less industry median ROA; ROA is computed by operating income divided by assets) as the second measure of grandstanding costs (large underperformance indicates high grandstanding costs). Specifically, we investigate the change in industry adjusted ROA from year -1 (year 0 is the IPO year) to year 1, 2, and 3 (Ch_AD_ROA1, Ch_AD_ROA2, Ch_AD_ROA3).
Numerous previous studies show evidence of long-term stock underperformance of IPO firms (Ritter, 1991; Loughran and Ritter, 1995; Brav and Gompers, 1997; Hamao et al., 2000; Kutsuna et al., 2002; Wang et al., 2002; Tykvova and Walz, 2007). We compute buy-and-hold returns during 12 month, 24 month, and 36 month starting at the month after the IPO (BHR12, BHR24, BHR36), to measure grandstanding costs (poor stock performance corresponds to high grandstanding costs). Following Ritter (1991), we use the adjusted buy-and-hold returns (AD_BHR) that is the IPO firm’s BHR less the matched firm’s BHR. For each of IPO companies, we choose as a matched firm the non-IPO firm (firms that went public in 1995 and before) in same industry that is closest in market value of outstanding shares. We use market value of non-IPO firms at December 1997 to find a matched firm of IPO companies that went public during 1998 to 2000. Similarly, we use market value of non-IPO firms at December 2000 (December 2003) to find a matched firm that went public during 2001 to 2003 (2004 to 2006).
In this research, we adopt several variables that potentially affect underpricing and long-term performance. Sahlman (1990) suggests that large stock offerings are associated with less information asymmetry. Ljungqvist (1999) and Hamao et al. (2000) show evidence that underpricing is negatively related to offering size. We adopt the offering size (LnOffersize) that is computed by the natural logarithm of offering price multiplied by the number of offered shares. Underwriters are likely to mitigate information asymmetry about IPO firms’ quality. Previous studies show evidence that IPOs involved with reputable underwriters experience less underpricing and better long-term performance (Bhabra and Pettway, 2003; Carter and Manaster 1990; Carter et al., 1998; Jain and Kini 1999; Paudyal et al., 1998). We follow Kaneko and Pettway (2003) to use a dummy variable that takes a value of one for IPOs underwritten by Japanese big three securities houses (Nomura Securities; Daiwa Securities; Nikko
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Securities) and zero for other IPOs (D_Rank). Ritter (1984) finds that IPOs in the hot market experiences abnormally high
underpricing. Kirkular et al. (2005) show that Japanese IPOs have significantly higher underpricing during the information technology (IT) boom in 1999 than IPOs in other years. Following them, we make a dummy variable that takes a value of one for IPOs in 1999 and zero for others (D_Hot). High-tech companies are likely to be subject to severe information asymmetry and thus suffer from large underpricing. We follow Kirkular et al. (2005) to make a dummy variable that takes a value of one for IPOs in the communication, electric appliance, and service industries and zero for others (D_Hitech). 4. Empirical results 4.1. Univariate analyses Table 2 indicates descriptive statistics separately for the entire sample, non-VC-backed IPOs, IVC-backed IPOs FVC-backed IPOs. The mean (median) AGE is 13.1 (9.0) for IVC-backed IPOs which is significantly lower than that for FVC-backed IPOs (22.2 and 19.5, respectively). Similarly, the average (median) firm size (book value of assets) is approximately JPY 7,400 (4,800) million for IVC-backed IPOs, which is significantly smaller than that for FSVC-backed IPOs. Those results are consistent with Hypothesis 1, suggesting that IVCs tend to make immature firms go public.
[Insert Table 2 about here] Panel B of Table 2 finds that about 72 percent of FVC-backed IPOs use JASDAQ for
listing exchange. In contrast, only 48 percent of IVC backed-IPOs do so. To accurately investigate the listing exchange choice of IPO firms, we also present descriptive statistics of D_Market for IPOs in November 1999 when MOTHERS was established and after. Consistent with Hypothesis 1, presented figures suggest that IVC-backed IPOs have significantly higher frequency of using MOTHERS and HERCULES than do FVC-backed IPOs. Barry et al. (1990) suggest that reputable underwriters prefer IPO firms with less information asymmetry. Panel B shows that IVC backed-IPOs tend to use less reputable underwriters. A possible interpretation of this finding is that IVC-backed IPOs are subject to severe information asymmetry and therefore reputable underwriters prefer FVC-backed IPOs. Those findings are consistent with the idea that IVCs have a grandstanding incentive, although the finding is also consistent with the conflict of interests hypothesis (IPOs backed by securities firms-affiliated VCs are underwritten by the parent company).
Regarding proxy variables for the costs of grandstanding, the mean and median underpricing is not significantly different between FVC-backed IPOs and IVC-backed
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IPOs. However, this result is potentially biased by the fact that FVCs tend to make firms go public during the hot issue period (Panel B). Indeed, we find a significantly higher underpricing for IVC-backed IPOs compared to FVC-backed IPOs when deleting IPOs during the hot market.
Table 3 indicates long-term performance of sample firms. We find that FVC-backed IPOs have significantly higher mean and median Ch_AD_ROA1 (-1% and 0.7%, respectively) than IVC-backed IPOs do (-4.2% and -0.6%, respectively). However, we do not find any significant differences in Ch_AD_ROA2, Ch_AD_ROA3 between the two groups. Similarly, AD_BHRs are not significantly different between FVC-backed IPOs and IVC-backed IPOs.
In the former analysis, we find that IVCs tend to make young and small firms go public especially on exchanges with less strict listing requirements. Therefore, we should investigate whether young and small firms that went public on MOTHERS and HERCULES have high underpricing and poor long-term underperformance. To test this story, we equally divide sample companies into two groups upon firm age (or size). As with Ritter (1991), Panel B of Table 3 presents clear evidence that young IPO firms have significantly higher underpricing and poorer long-term operating performance than old IPOs do. Similarly, Panel B of Table 3 indicates that large IPO companies have significantly smaller underpricing and better long-term (both operating and stock) performance than small IPO firms do. This result is consistent with the argument of Ritter (1991) and Brav and Gompers (1997) that underperformance of IPO firms is especially true for small companies. Finally, Panel D of Table 3 shows that firms that went public on JASDAQ have significantly smaller underpricing and better long-term (both operating and stock) performance than firms that went public on MOTHERS and HERCULES. Those results suggest that our measures of firm immatureness are valid. Taken all together, the univariate test results show evidence of grandstanding by IVCs. 4.2. Regression of firm age, size, and listing exchange choice We conduct multinomial regression analyses in which the dependent variable is a discrete variable indicating the firm’s venture capital involvement and affiliation (non-VC-backed, IVC-backed, or FVC-backed) to investigate whether IVCs make immature firms go public after controlling for various factors. The key independent variables are LnAge (natural logarithm of firm age) and LnAsset (natural logarithm of assets). There is a positive correlation between those variables (Table 4) and the both variables’ coefficients become insignificant when we simultaneously include LnAge and LnAsset in the independent variable. That is why we separately include those variables (models (1) and (2)). Control variables include ROA, D_Hitech, Leverage (liabilities
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divided by assets), and Liquidity (current assets divided by current liabilities). [Insert Table 4 about here]
Panel A of Table 5 indicates multinomial regression results when using non-VC- backed IPOs as base outcome. Model (1) shows that IVC-backed IPO firms are significantly younger than non-VC-backed IPO firms and FVC-backed IPO companies are significantly older than non-VC-backed IPO firms. Similarly, model (2) suggests that IVC-backed IPO firms are significantly smaller than non-VC-backed IPO firms. We also compare firm age and size between IVC- and FVC-backed IPOs in multinomial regression analyses (Panel B). We find that IVC-backed IPO companies are significantly younger and smaller than FVC-backed IPO firms. Those results provide a support for Hypothesis 1. We do not find a significant coefficient for control variables.
[Insert Table 5 about here] Hamao et al. (2000) stress that SFVCs generate different conflicts of interests from
BVCs. Especially in Japan, banks tend to increase ownership of firms after their IPOs and keep long-term relationships. This fact gives rise to a prediction that SFVCs behave in a different way from BVCs do. To test this idea, we conduct multinomial regression analyses that discriminates SFVC-backed IPOs from BVC-backed IPOs. Unreported analyses suggest that both SFVCs and BVCs make older and larger (in asset size) companies go public than IVC do. We find that BVC-backed IPO companies are significantly older than those backed by SFVCs, although there is no significant difference in asset size between BVC- and SFVC-backed IPOs.
Hypothesis 1 also predicts that IVC-backed IPOs tend to list on MOTHERS and HERCULES that have less strict listing requirements. To further test this prediction, we conduct logit regression analyses that use D_Market as a dependent variable. This analysis limits the sample to firms that went public in November 1999 when MOTHERS was established and after to accurately analyze IPO firms’ listing exchange choice. We adopt as key independent variables D_IVC (one for IVC-backed IPOs and zero for others) and D_Non-VC (one for non-VC-backed IPOs and zero for others) to investigate the difference in the probability of choosing JASDAQ between FVC-backed IPOs and others. Logit regression results are presented in Table 6: model (1) includes LnAge whereas model (2) adopts LnAsset. Results suggest that old and large firms that perform well tend to list on JASDAQ that has more strict listing requirements. In addition, both models engender a negative coefficient on D_IVC, suggesting that IVCs tend to make firms list on MOTHERS and HERCULES after controlling for firm age, size, and performance. The D_IVC coefficient is insignificant in model (1) probably because it is correlated with LnAge; the D_IVC coefficient becomes significant when
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we delete LnAge from the model (1). Those regression results provide robust evidence that IVCs tend to make immature firms go public. We also conduct regression analyses that discriminate SFVC and BVC. Unreported results suggest that BVCs are more likely to make firms go public on JASDAQ than IVCs and SFVCs do. Overall, our analyses imply that SFVCs stand on the intermediate between BVCs and IVCs in terms of grandstanding incentives (BVCs have the weakest incentive of grandstanding).
[Insert Table 6 about here] Regarding other variables, D_Non-VC has an insignificant coefficient; there is no
significant difference in the probability of choosing JASDAQ between non-VC-backed IPOs and FVC-backed IPOs. High-tech companies that are subject to severe information asymmetry tend to choose MOTHERS and HERCULES that have less strict listing requirements than do JASDAQ. High-leveraged firms with low liquidity tend to choose JASDAQ. 4.3. Regression of underpricing As mentioned, we need to test the validity of our firm immatureness measures (Hypothesis 2). We conduct regression analyses in which Underpricing is explained by LnAge, LnAsset, and D_Market. Previous US studies show evidence that VC-backed IPOs experience small underpricing (certification effects) (Barry et al., 1990; Megginson and Weiss, 1991). We also include D_Non-VC and D_IVC to analyze the direct effects of venture capital involvement and its affiliation on underpricing. Following previous studies, we adopt LnOffersize, D_Rank, D_Hitech, D_Hot as control variables (Kaneko and Pettway, 2003; Kirkular et al., 2005; Ljungqvist, 1999; Megginson and Weiss, 1991; Wang et al., 2002). As with the former analysis, we do not simultaneously include the proxy variables for firm’s immatureness (LnAge, LnAsset, D_Market) in the independent variable: models (1) and (4) of Table 7 adopt LnAge; models (2) and (5) use LnAsset; finally, models (3) and (6) include D_Market. We also find seriously high positive correlation between LnAsset and LnOffersize (correlation coefficient is 0.558); we delete LnOffersize in estimations that include LnAsset (models (2) and (5)).
All models in Table 7 engender a negative and significant coefficient on LnAge, LnAsset, and D_Market. Although we do not find a significant direct effect of IVC-backing on underpricing, the results suggest that our measures of firm’s immatureness are valid (Hypothesis 2). Some researchers may argue that effective monitoring and certification by IVCs enable young and small companies go public in early stages. If this story holds true, we should find that the negative effect of firm age, size, and JASDAQ listing on underpricing becomes weak for IVC-backed IPOs. Models
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(4) – (6) include the interaction term between the immatureness variable and D_IVC to test this idea. However, we find no results that support this story. Together with the former result, our results suggest that IVCs suffer from high underpricing as a result of making immature companies go public on exchanges with less strict listing requirements. It serves as clear evidence of grandstanding hypothesis for IVCs. Conversely, FVCs have a weaker incentive to grandstand than do IVCs.
[Insert Table 7 about here] With respect to control variables, LnOffersize has a negative and significant
coefficient. This finding is consistent with the idea that large IPOs suffer less from information asymmetry (Hamao, 2000 Ljungqvist, 1999; Sahlman, 1990). D_Hot has a positive and significant coefficient, which is consistent with findings by Ritter (1984), Wang et al. (2002), and Kirkulak et al. (2005). We find that high-tech industries that are subject to severe information asymmetry experience large underpricing. Again, this result is consistent with previous studies (Kirkulak et al., 2005).
Results so far imply that IVCs tend to make younger and smaller companies go public than do FVCs and as a result bear higher costs in the form of underpricing of IPO firms. To accurately test this story, we conduct 2SLS regression of underpricing. We use only IVC- and FVC-backed IPOs as a sample of this analysis and run a logit regression in which the dependent variable is the dummy variable that takes a value of one for IVC-backed IPOs and zero for FVC-backed IPOs (D_Type). The first step regression includes LnAge, LnAsset, ROA, D_Hitech, Leverage, and Liquidity in the independent variable. Year -3 data is used for all the independent variables to address causality concerns. Unreported results engender a negative and significant coefficient on LnAge and LnAsset; IVCs tend to make younger and smaller companies go public than do FVCs.
In the second step regression, we conduct regression analyses of Underpricing that use as a key independent variable the inverse mills ratio estimated in the first step regression (P_Type). The second regression adopts D_Market, LnOffersize, D_Rank, D_Hot, and D_Hitech as control variables. Table 8 presents the second step regression results. It engenders a positive and significant coefficient on P_Type, showing evidence that IVCs experience significantly larger underpricing at the time of firms’ IPO than do FVCs as a result of making immature firms go public. Table 8 also carries a negative and significant coefficient on D_Market (at the 10 percent significance level), which is consistent with the idea that IPOs in stock exchanges with less strict listing requirements suffer from high underpricing. Those results are consistent with Hypothesis 2. As with Table 7, Table 8 engenders a negative and significant coefficient
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on LnOffersize and a positive and significant coefficient on D_Hot and D_Hitech. Those results are consistent with findings by previous studies.
[Insert Table 8 about here] 4.4. Regression of long-term performance Finally, we investigate whether IVCs bear costs in the form of poor long-term performance of IPO firms as a result of their making immature companies go public. Table 9 shows regression results of long-term operating performance (Ch_AD_ROAt). Again, we separately include proxy variables for firm immatureness (LnAge, LnAsset, and D_Market). Models (1) – (3) of all Panels present clear evidence that small and young IPO firms that list on stock exchanges with less strict listing requirements show poor long-term operating performance. Although we do not find a significant direct effect of IVC-backing on the long-term operating performance, the result is consistent with Hypothesis 2. Models (4) – (6) include interaction terms of firm’s immatureness variables and D_IVC. All estimations engender an insignificant coefficient on those interaction terms, which does not support the idea that IVCs mitigate the effects of firm age, size, and listing exchange choice on long-term operating performance; there is no evidence that IVCs enable young and small companies go public in more early stages through their effective monitoring and certification effects. Regarding control variables, D_RANK has a positive and significant coefficient in some specifications. This result suggests that IPOs underwritten by reputable securities houses have better long-term operating performance.
[Insert Table 9 about here] Table 10 presents regression results of adjusted long-term stock performance
(AD_BHRt) that is our alternative measure of grandstanding costs. All panels engender a positive and significant coefficient on D_Market, suggesting that firms that went public on stock exchanges with less strict listing requirements (MOTHERS and HERCULES) experience poor long-term stock performance. In addition, Panel A shows that large IPO companies have better long-term stock performance during twelve month following their IPOs. Although we do not find a significant coefficient on LnAge and D_IVC, the results are consistent with the idea that IVCs suffer from poor long-term stock performance as a result of making immature companies go public on stock exchanges with less strict listing requirements. Again, we do not find evidence that IVC-involvement weakens the effects of firm age, size, and listing exchange choice on long-term stock performance. Regarding control variables, D_Hitech has a negative and significant coefficient, which is consistent with findings by early studies (Kirkular et al., 2005).
14
[Insert Table 10 about here] To further test the idea that IVCs make young and small companies go public and thereby suffer from poor long-term performance, we conduct 2SLS regression analyses of long-term performance measures. The first step regression is a logit regression of D_Type that is identical to the first regression for the former 2SLS analysis (Table 9). Table 11 presents results of the second step regression, in which the long-term performance measures are explained by P_Type (the inverse-mills ratio estimated in the first step regression) and control variables. All estimations engender a negative coefficient on P_Type and most coefficients are statistically significant. In addition, regressions of AD_BHRt (Panel B) engender a positive and significant coefficient on D_Market. Taken all together, our results present clear evidence of IVC’s grandstanding behaviors; IVCs make immature companies go public on stock exchanges with less strict listing requirements and as a result, IVCs suffer from large underpricing and poor long-term performance of IPO companies. In other words, affiliations with financial institutions significantly decrease VCs' grandstanding incentives. As with the former analyses, Panel B of Table 11 shows that high-tech firms experience poor long-term stock performance during a few years following their IPOs. 5. Conclusion Previous studies have extensively investigated outcomes of diversification by financial institutions. Previous studies have shown negative views on banks and securities firms' entry into venture capital industry. Those studies argue that independent venture capitalists provide effective monitoring and certification effects; as a result, IPOs backed by independent venture capitalists experience small underpricing and better long-term performance (Hamao et al., 2000; Wang et al., 2002; Tykvova and Walz, 2007). This paper principally intended to present a positive aspect of finance-affiliated venture capitalists (or negative aspects of independent venture capitalists). Compared to venture capital firms that are subsidiaries of financial institutions, independent venture capitalists need to rely on external capital markets to create funds and therefore they have to improve their reputation. The demand for improved reputation will give them an incentive to make immature firms go public. In other words, independent venture capitalists will have a grandstanding incentive like young venture capitalists in US (Gompers, 1996).
We test this idea by using Japanese companies that went public during 1998 to 2006. Our analyses present clear evidence that independent venture capitalists make younger and smaller firms go public than do venture capital firms that are subsidiaries of financial institutions. In addition, IPO firms backed by independent venture capitals are
15
more likely to list on stock exchanges with less strict listing requirements. Importantly, firm age and size are negatively related to underpricing and positively associated with long-term performance of IPO companies. IPO firms that listed on stock exchanges with less strict listing requirements have higher underpricing and poorer long-term performance. Finally, our 2SLS regression results suggest that independent venture capitalists suffer from large underprincing and poor long-term performance of IPO companies as a result of making small and young companies go public. Those results uncover the dark side of independent venture capitalists.
Our analyses make several important contributions. First, our results suggest that affiliations with financial institutions substantially changes venture capitalists behaviors. Finance-affiliated venture capitalists that have access to internal capital markets are less myopic and have weaker grandstanding incentives than do independent venture capitalists. We argue that bank and securities firms entry in venture capital industry effectively prohibits immature firms from going public. Second, we show the dark side (grandstanding) of independent venture capitalists that are viewed as an effective monitor by previous studies. Finally, our results can be viewed as additional evidence of grandstanding hypothesis for venture capitalists (Gompers, 1996; Wang et al., 2003). Acknowledgements This paper is financially supported by the JSPS Grants-in-Aid for Scientific Research and Trust Companies Association of Japan. We thank Yusuke Kinari for his valuable comments and advice.
16
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22
Table 1 Definition of variables Variable Definition
D_Market Dummy variable that takes a value of one for IPO firms that listed on JASDAQ
and zero for those listed on MOTHERS and HERCULES.
Underpricing Closing price at the initial trading day minus offering price divided by offering
price.
Ch_AD_ROAt Change in industry adjusted ROA from year -1 to year t. Industry adjusted ROA
is computed by the IPO firm’s ROA (operating income divided by assets) minus
industry median ROA. IPO year is denoted by year 0.
AD_BHRt IPO firm’s buy-and-hold return during t month starting at the month after IPO
minus matched firm’s buy-and-hold return during the same period.
D_Market Dummy variable that takes a value of one for IPO firms that listed on JASDAQ
and zero for those listed on MOTHERS and HERCULES.
LnAge Natural logarithm of firm age at the time of IPO
LnAsset Natural logarithm of assets
LnOffersize Natural logarithm of offer price multiplied by the number of shares offered in
IPO.
D_Rank Dummy variable that takes a value of one for IPOs underwritten by Japanese big
three securities houses (Nomura Securities; Daiwa Securities; Nikko Securities)
and zero for other IPOs.
D_Hitech Dummy variable that takes a value of one for IPOs in the communication, electric appliance, and service industries and zero for others
D_Hot Dummy variable that takes a value of one for IPOs in 1999 (Information
Technology boom) and zero for other IPOs.
Leverage Liabilities divided by assets
Liquidity Current assets divided by current liabilities
D_IVC Dummy variable that takes a value of one for IPOs backed by an independent
venture capitalist and zero for others.
D_Non-VC Dummy variable that takes a value of one for IPOs that are not invested by
venture capitalists and zero for other IPOs
D_Type Dummy variable that takes a value of one for IPOs backed by independent
venture capitalists and zero for IPOs backed by financial institution’s subsidiary
venture capital firms.
23
Table 2 Descriptive statistics
This table shows descriptive statistics separately for the entire sample (FULL), non-VC-backed IPOs
(Non-VC), IVC-backed IPOs (IVC), and FVC-backed IPOs (FVC). Panel A presents mean and
median of non-dummy variables. T-statistics (Z-statistics) are for the null hypothesis that the mean
(median) is identical between IVC and FVC. See Table 1 for definition of variables.
Panel A:Non-dummy variables
Variable Sample N Mean t-statistics Median Z-statistics
MV
FULL 710 26727.23 10340.72
0.196
Non-VC 242 30730.42 11543.75
IVC 58 15682.62 0.839
9159.425
FVC 410 25926.78 9675.295
Age
FULL 710 20.392 17.05
4.811***
Non-VC 242 19.134 16.05
IVC 58 13.146 4.369***
9.04
FVC 410 22.160 19.535
Asset
FULL 688 13794.16 6562.5
2.776***
Non-VC 233 17630.75 7269
IVC 57 7433.737 1.860*
4818
FVC 398 12459.03 6562.5
Offersize
FULL 710 2776.887 1080.5
1.040
Non-VC 242 4465.169 1189
IVC 58 1490.103 0.976
1048
FVC 410 1962.422 1024
Panel B: Dummy variables
Variable Sample N Number of observations
that take a value of one
Percent Z-statistics
D_Rank FULL 710 440 0.620
-2.498**
Non-VC 242 156 0.645
IVC 58 26 0.448
FVC 410 258 0.629
24
Table 2 (Continued) D_Market FULL 710 493 0.694
-3.857***
Non-VC 242 169 0.698
IVC 58 28 0.483
FVC 410 297 0.724
D_Market
(after the
establishment
of Mothers)
FULL 618 401 0.649
-2.964***
Non-VC 219 146 0.667
IVC 55 25 0.455
FVC 344 231 0.672
D_Hot FULL 710 65 0.092
-2.170**
Non-VC 242 14 0.058
IVC 58 1 0.017
FVC 410 50 0.122
D_Hitech FULL 710 349 0.492
0.736
Non-VC 242 116 0.479
IVC 58 32 0.552
FVC 410 201 0.490
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level
25
Table 3 Underpricing and long-term performance of IPO firms This table shows Underpricing and long-term performance (Ch_AD_ROA and AD_BHR) of
sample firms. Panel A presents those measures separately for the entire sample (FULL),
non-VC-backed IPOs (Non-VC), IVC-backed IPOs (IVC), and FVC-backed IPOs (FVC). Panel B
shows those measures for young (firms that are younger than the median firm age) and old
companies (firms that are older than the median firm age). Panel C indicates those variables for
small (firms that have assets smaller than its median) and large companies (firms that have assets
larger than its median). Panel D exhibits those variables for IPOs listed on JASDAQ and those
listed on MOTHERS and HERCULES (MOT / HER). T-statistics (Z-statistics) are for the null
hypothesis that the mean (median) is identical between the groups (in Panel A, identical between
IVC and FVC). See Table 1 for definition of variables.
Variable Sample N Mean t-statistics Median Z-statistics
Panel A: Entire sample
Underpricing
FULL 710 0.702
-1.589
0.336
-1.388
Non-VC 242 0.712 0.315
IVC 58 0 .905 0.499
FVC 410 0.667 0.316
Underpricing
(Hot issue IPOs are
deleted)
FULL 645 0.628
-2.183**
0.286
-1.697*
Non-VC 228 0.675 0.315
IVC 57 0.848 0 .481
FVC 360 0.564 0. 272
Ch_AD_ROA1
FULL 677 -0.015
1.962**
0.006
1.060
Non-VC 229 -0.016 0.006
IVC 56 -0.042 -0.006
FVC 392 -0.010 0.007
Ch_AD_ROA2
FULL 657 -0.014
1.096
0.009
0.161
Non-VC 220 -0.014 0.008
IVC 54 -0.032 0.007
FVC 383 -0.011 0.010
Ch_AD_ROA3
FULL 585 -0.009
0.586
0.012
0.036
Non-VC 189 -0.014 0.007
IVC 49 -0.016 0.014
FVC 347 -0.005 0.014
26
Table 3 (Continued) AD_BHR12 FULL 675 0.046
0.555
-0.225
-0.041
Non-VC 229 -0.044 -0.180
IVC 53 -0.026 -0.237
FVC 393 0.108 -0.238
AD_BHR24 FULL 673 0.003
0.365
-0.307
-0.307
Non-VC 229 0.038 -0.313
IVC 53 -0.066 -0.298
FVC 391 -0.008 -0.309
AD_BHR36 FULL 665 -0.108
-0.566
-0.277
-0.060
Non-VC 225 -0.049 -0.284
IVC 52 0.056 -0.275
FVC 388 0.056 -0.267
Panel B: Old and young IPOs
Underpricing Young 354 0. 947
6.129*** -0.552
5.984*** Old 356 0.455 -0.167
Underpricing
(Hot issue IPOs are
deleted)
Young 313 0.84
5.956***
-0.523
5.959*** Old
332 0.403 -0.143
Ch_AD_ROA1 Young 329 -0.039
-5.859*** -0.019
-6.490*** Old 348 0.012 -0.02
Ch_AD_ROA2 Young 322 -0.038
-5.115 *** -0.012
-5.274*** Old 335 -0.013 -0.019
Ch_AD_ROA3
Young 295 -0.027 -3.426***
-0.009 -3.730***
Old 290 -0.007 -0.02
AD_BHR12 Young 343 -0.018
-1.075 -0.106
-5.003*** Old 332 -0.356 -0.126
AD_BHR24 Young 343 -0.101
-1.564 -0.104
-4.740*** Old 331 -0.418 -0.143
AD_BHR36 Young 340 -0.164
-0.661 -0.054
-3.906*** Old 324 -0.391 -0.181
27
Table 3 (Continued)
Panel C: Large and small firms
Underpricing Small 366 0.92
5.258*** -0.496
6.030*** Large 344 0.554 -0.188
Underpricing
(Hot issue IPOs are
deleted)
Small 320 0.859
6.384***
-0.529
6.173*** Large
325 0.393 -0.167
Ch_AD_ROA1 Small 339 -0.03
-3.502*** -0.015
-3.914*** Large 338 0.001 -0.016
Ch_AD_ROA2 Small 333 -0.035
-4.322*** -0.01
-4.253*** Large 324 0.007 -0.02
Ch_AD_ROA3 Small 301 -0.03
-3.867*** -0 .007
-3.688*** Large 284 0.011 -0.021
AD_BHR12 Small 353 -0.115
-2.659*** -0.334
-5.051*** Large 322 0.192 -0.115
AD_BHR24 Small 353 -0.148
-2.208** -0.425
-4.238*** Large 320 0.141 -0.161
AD_BHR36 Small 347 -0.331
-2.593*** -0.367
-3.875*** Large 318 0.097 -0.18
Panel D: JASDAQ versus non-JASDAQ
Underpricing
JASDAQ 217 0.996 4.818*** -0.778 4.979***
MOT/
HER
493 0.572 -0.216
Underpricing
(hot issue excluded)
JASDAQ 216 0.984 6.958*** -0.773 5.745***
MOT/
HER
468 0.449 -0.188
Ch_AD_ROA1
JASDAQ 209 -0.053 --5.893*** -0.03 -5.682***
MOT/
HER
468 0.003 -0.015
Ch_AD_ROA2
JASDAQ 200 -0.048 -4.597*** -0.018 -3.724***
MOT/
HER
457 0.001 -0.015
28
Table 3 (Continued)
Ch_AD_ROA3 JASDAQ 166 -0.033 -2.865*** -0.008 -2.247**
MOT/ HER 419 0 .001 -0.015
AD_ BHR12 JASDAQ 204 -0.321 -4.222*** -0.422 -6.692***
MOT/ HER 471 0.204 -0.116
AD_ BHR24 JASDAQ 203 -0.429 -4.402*** -0.481 -5.944***
MOT/ HER 470 0.19 -0.172
AD_ BHR36 JASDAQ 200 -0.48 -2.962*** -0.449 -5.099***
MOT/ HER 465 0.052 -0.191
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level
29
Table 4 Correlation matrix This table indicates correlation coefficients among independent variables.
LnAge LnAsset D_
Market
Ln
Offersize
D_
Rank
D_
Hot
D_
Hitech
ROA Leve
rage
Liqui
dity
LnAge 1.000
LnAsset 0.355 1.000
D_Market 0.447 0.361 1.000
LnOffersize -0.068 0.558 -0.079 1.000
D_Rank 0.112 0.279 0.169 0.227 1.000
D_Hot 0.081 0.133 0.198 -0.001 0.130 1.000
D_Hitech -0.311 -0.335 -0.269 0.082 -0.028 -0.066 1.000
ROA -0.063 -0.217 0.065 0.036 -0.066 -0.029 0.141 1.000
Leverage 0.300 0.424 0.324 -0.204 0.007 -0.016 -0.378 -0.268 1.000
Liquidity -0.219 -0.073 -0.210 0.171 0.053 0.068 0.121 -0.147 -0.364 1.000
30
Table 5 Multinomial logit regression results This table presents multinomial logit regression results. The dependent variable indicates the
IPO firm’s venture capital affiliation (non-venture capital-backed IPOs, IVC-backed IPOs, or
FVC-backed IPOs). Panel A presents results when treating non-venture capital-backed IPOs as
base outcome. Panel B indicates results when treating IVC-backed IPOs as base outcome. See
Table 1 for definitions of variables. Z-statistics are computed by using robust standard errors.
(1) (2)
Coefficient Z-statistics Coefficient Z-statistics
Panel A: Results when using non-venture capital-backed IPOs as base outcome
IVC-backed IPOs versus non-venture capital-backed IPOs
LnAge -0.421*** (-2.63)
LnAsset -0.718*** (-3.95)
ROA -1.355 (-0.71) -2.325 (-1.14)
D_Hitech 0.099 (0.31) -0.011 (-0.03)
Leverage 0 .584 (0.69) 1.412 (1.54)
Liquidity 0 .023 (0.86) 0.026 (1.45)
Constant -0.643 (-0.89) 4.330*** (2.62)
FVC-backed IPOs versus non-venture capital-backed IPOs
LnAge 0.348*** (3.15)
LnAsset -0.103 (-1.39)
ROA -1.989 (-1.64) -2.303* (-1.88)
D_Hitech 0 .150 (0.80) -0.041 (-0.22)
Leverage -0.421 (-0.80) -0.047 (-0.09)
Liquidity 0 .027 (1.15) 0 .017 (0.98)
Constant -0.124 (-0.24) 1.958** (2.25)
N 686
Panel B: Results when using IVC-backed IPOs as base outcome
Non-venture capital-backed IPOs versus IVC-backed IPOs
LnAge 0 .421*** (2.63)
LnAsset 0.718*** (3.95)
ROA 1.355 (0.71) 2.325 (1.14)
31
Table 5 (Continued) D_Hitech -0.099 (-0.31) 0.012 (0.03)
Leverage -0.584 (-0.69) -1.412 (-1.54)
Liquidity -0.023 (-0.86) -0.028 (-1.45)
Constant 0 .643 (0.89) -4.330*** (-2.62)
FVC-backed IPOs versus IVC-backed IPOS
LnAge 0 .769*** (4.94)
LnAsset 0.718*** (3.95)
ROA -0.634 (-0.35) 2.325 (1.14)
D_Hitech 0 .051 (0.16) 0.012 (0.03)
Leverage -1.005 (-1.31) -1.412 (-1.54)
Liquidity 0 .005 (0.45) -0.028 (-1.45)
Constant 0 .519 (0.82) -4.330*** (-2.62)
N 686
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level
32
Table 6 Logit regression results of listing exchange choice
This table shows logit regression results in which the dependent variable takes a value of one
for IPOs listed on JASDAQ and zero for IPOs listed on MOTHERS and HERCULES. This
analysis limits to firms that went public in November 1999 when MOTHERS was established
and after. JASDAQ has more strict listing requirements than other exchanges do. See Table 1
for definition of variables. Z-statistics are computed by using robust standard errors.
(1) (2)
Coefficient Z-statistics Coefficient Z-statistics
D_IVC -0.389 (-1.14) -0.705** (-2.11)
D_Non-VC 0.124 (0.55) -0.206 -0.95
LnAge 1.073*** (7.57 )
LnAsset 0.740 *** (5.04)
ROA 4.788 *** (3.27) 5.052 *** (3.49)
D_Hitech -0.518** (-2.31) -0.594*** (-2.61)
Leverage 2.193*** (3.09) 0.909 (1.18)
Liquidity -0.092 (-1.52) -0.180** (-2.47)
Constant -3.180*** (-4.32) -5.817*** (-4.29)
Pseudo R2 0.2497 0.2084
N 601
33
Table 7 Regression results of underpricing This table shows regression results of Underpricing. See Table 1 for definition of variables.
Figures in parentheses are t-statistics computed by using robust standard errors.
(1) (2) (3) (4) (5) (6)
LnAge -0.266***
(-5.32)
-0.256***
(-4.90)
LnAge *
D_IVC
-0.146
(-0.80)
LnAsset -0.293***
(-7.55)
-0.271***
(-6.92)
LnAsset *
D_IVC
-0.316*
(-1.68)
D_Market -0.484***
(-5.41)
-0.441***
(-4.69)
D_Market *
D_IVC
-0.453
(-1.56)
D_IVC
0 .124
(0.79)
0.217
(1.43)
0.167
(1.11)
0.458
(0.86)
2.902*
(1.73)
0.395
(1.56)
D_Non-VC 0 .116
(1.34)
0.141
(1.64)
0.163*
(1.89)
0.118
(1.36)
0.138
(1.60)
0.164*
(1.90)
LnOffersize -0.200***
(-6.18)
-0.208***
(-6.33)
-0.200***
(-6.20)
-0.210***
(-6.42)
D_Rank -0.072
(-0.92)
-0.038
(-0.45)
-0.052
(-0.65)
-0.074
(-0.93)
-0.037
(-0.44)
-0.055
(-0.69)
D_Hot 0.942***
(4.24)
0 .896***
(3.93)
1.043***
(4.53)
0.941***
(4.22)
1.060***
(4.42)
1.033***
(4.46)
D_Hitech 0.273***
(3.42)
0.183**
(2.36)
0.307***
(3.70)
0.271***
(3.40)
0.185**
(2.37)
0.299***
(3.61)
Constant 2.614***
(8.42)
3.073***
(8.71)
2.230***
(8.39)
2.591***
(8.29)
2.879***
(8.04)
2.225***
(8.38)
Adjusted R2 0.1568 0.1575 0.1547 0.1576 0.1631 0.1578
Observations 710 688 710 710 688 710
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level
34
Table 8 2SLS regression results of underpricing This table shows 2SLS regression results of underpricing. The sample consists of IVC- and
FVC-backed IPOs. In the first regression, we conduct a logit regression in which the
dependent variable is the dummy variable that takes a value of one for IVC-IPOs and zero for
FVC-IPOs (D_Type). Specifically, we estimate the following equation. In the first step
regression, Year -3 data is used for all independent variables to address causality issues.
Prob (D_Type = 1) = a0 + b1LnAgei + b2LnAsseti + b3ROAi+b4D_Hitechi+b5Leveragei +
b6Liquidityi + ui
The presented figures are estimation results of the second step regression, in which
Underpricing is explained by the inverse-mills ratio estimated in the first regression (P_Type)
and control variables. T-statistics are computed by using robust standard errors. See Table 1
for definition of variables.
Coefficient t-statistics
P_Type 3.212*** 3.85
D_Market -0.216* -1.71
LnOffersize -0.163*** -3.41
D_Rank -0.030 -0.34
D_Hot 0 .861*** 4.15
D_Hitech 0 .281*** 2.91
Constant 1.400*** 3.37
Adjusted R2 0.1867 N 427
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level
35
Table 9 Regression results of long-term operating performance This table shows regression results of the industry adjusted long-term operating performance. Panel
A adopts Ch_AD_ROA1 (change in industry adjusted ROA from year -1 to year 1) as a dependent
variable. Panel B adopts Ch_AD_ROA2 (change in industry adjusted ROA from year -1 to year 2) as
a dependent variable. Finally, Panel C uses Ch_AD_ROA3 (change in industry adjusted ROA from
year -1 to year 3) as a dependent variable. Figures in parentheses are t-statistics computed by using
robust standard errors. See Table 1 for definition of variables.
(1) (2) (3) (4) (5) (6)
Panel A: Regression results of Ch_AD_ROA1
LnAge 0.032***
(4.77)
0 .032***
(4.60)
LnAge *
D_IVC
-0.004
(-0.21)
LnAsset 0.021***
(4.58)
0 .020***
(4.11)
LnAsset *
D_IVC
0.024
(1.59)
D_Market 0.053***
(4.18)
0 .051***
(3.86)
D_Market *
D_IVC
0.015
(0.37)
D_IVC -0.015
(-0.73)
-0.022
(-1.16)
-0.020
(-1.00)
-0.005
(-0.09)
-0.227
(-1.63)
-0.027
(-0.75)
D_Non-VC 0.001
(0.03)
-0.008
(-0.84)
-0.005
(-0.55)
0.001
(0.04)
-0.008
(-0.82)
-0.005
(-0.55)
LnOffersize 0.001
(0.16)
0.002
(0.30)
0 .001
(0.15)
0 .002
(0.31)
D_Rank 0.007
(0.81)
0.001
(0.15)
0.005
(0.50)
0.007
(0.81)
0.001
(0.15)
0.005
(0.52)
D_Hitech 0.001
(-0.09)
-0.002
(-0.22)
-0.004
(-0.42)
0 .001
(0.08)
-0.002
(-0.25)
-0.003
(-0.38)
Constant -0.111***
(-2.58)
-0.199***
(-4.60)
-0.061
(-1.60)
-0.111***
(-2.57)
-0.184***
(-4.11)
-0.061
(-1.60)
Adjusted R2 0.0624 0.0428 0.0522 0.0625 0.0456 0.0525
Observation 677 677 677 677 677 677
36
Table 9 (Continued)
Panel B: Regression results of Ch_AD_ROA2
LnAge 0.031***
(4.25)
0 .030***
(4.01)
LnAge *
D_IVC
0.011
(0.41)
LnAsset 0.022***
(4.34)
0 .021***
(4.06)
LnAsset *
D_IVC
0.021
(0.89)
D_Market 0.042***
(3.09)
0.040***
(2.82)
D_Market *
D_IVC
0.023
(0.49)
D_VC -0.003
(-0.14)
-0.009
(-0.42)
-0.009
(-0.42)
-0.028
(-0.37)
-0.189
(-0.87)
-0.022
(-0.50)
D_Non-VC 0.002
(0.23)
-0.006
(-0.63)
-0.003
(-0.27)
0.002
(0.22)
-0.006
(-0.62)
-0.003
(-0.28)
LnOffersize -0.003
(-0.55)
-0.002
(-0.47)
-0.003
(-0.54)
-0.002
(-0.44)
D_Rank 0.021**
(2.03)
0.013
(1.20)
0.021*
(1.91)
0.021**
(2.06)
0.013
(1.22)
0.021*
(1.95)
D_Hitech -0.002
(-0.19)
-0.003
(-0.34)
-0.007
(-0.72)
-0.002
(-0.17)
-0.004
(-0.36)
-0.007
(-0.67)
Constant -0.088**
(-2.02)
-0.215***
(-4.55)
-0.032
(-0.87)
-0.086**
(-1.97)
-0.202***
(-4.21)
-0.032
(-0.87)
Adjusted R2 0.0547 0.0428 0.0381 0.0550 0.0446 0.0387
Observation 657 657 657 657 657 657
Panel C: Panel C: Regression results of Ch_AD_ROA3
LnAge 0.026***
(3.58)
0.026***
(3.34)
LnAge *
D_IVC
0.007
(0.27)
37
Table 9 (Continued) LnAsset 0.024***
(4.09)
0 .023***
(3.84)
LnAsset *
D_IVC
0.009
(0.41)
D_Market 0.027*
(1.78)
0.025
(1.55)
D_Market *
D_IVC
0.021
(0.43)
D_IVC 0.005
(0.21)
-0.001
(-0.06)
-0.003
(-0.14)
-0.012
(-0.16)
-0.078
(-0.40)
-0.015
(-0.34)
D_Non-VC -0.003
(-0.23)
-0.011
(-0.94)
-0.008
(-0.63)
-0.003
(-0.24)
-0.011
(-0.94)
-0.008
(-0.64)
LnOffersize -0.003
(-0.42)
-0.003
(-0.41)
-0.003
(-0.42)
-0.003
(-0.38)
D_Rank 0.022**
(2.01)
0.011
(0.98)
0.022**
(2.01)
0.022**
(2.02)
0.011
(0.99)
0.023**
(2.03)
D_Hitech 0.002
(0.22)
0.003
(0.29)
-0.005
(-0.46)
0.002
(0.23)
0.003
(0.28)
-0.004
(-0.42)
Constant -0.075
(-1.53)
-0.228***
(-4.23)
-0.018
(-0.41)
-0.074
(-1.50)
-0.223***
(-3.96)
-0.018
(-0.42)
Adjusted R2 0.0402 0.0416 0.0216 0.0403 0.0419 0.0221
Observation 585 585 585 585 585 585
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level
38
Table 10 Regression results of long-term stock performance This table shows regression results of the adjusted buy-and-hold return (buy-and-hold return of the
IPO firm less that of matched firm). Panel A adopts AD_BHR12 (adjusted buy-and-hold return during
12 month starting at the month after IPO) as a dependent variable. Panel B adopts AD_BHR24
(adjusted buy-and-hold return during 24 month starting at the month after IPO) as a dependent
variable. Finally, Panel C uses AD_BHR36 (adjusted buy-and-hold return during 36 month starting at
the month after IPO) as a dependent variable. Figures in parentheses are t-statistics computed by
using robust standard errors. See Table 1 for definition of variables.
(1) (2) (3) (4) (5) (6)
Panel A: Regression results of AD_BHR12
LnAge -0.016
(-0.14)
-0.037
(-0.30)
LnAge *
D_IVC
0.303
(1.60)
LnAsset 0.141**
(2.07)
0.140*
(1.95)
LnAsset *
D_IVC
0.017
(0.13)
D_Market 0.473***
(4.63)
0 .467***
(4.37)
D_Market *
D_IVC
0.075
(0.31)
D_IVC -0.104
(-0.58)
-0.059
(-0.39)
-0.009
(-0.06)
-0.799
(-1.62)
-0.206
(-0.18)
-0.048
(-0.40)
D_Non-VC -0.168
(-1.33)
-0.169
(-1.46)
-0.160
(-1.43)
-0.172
(-1.35)
-0.169
(-1.45)
-0.160
(-1.43)
LnOffersize -0.004
(-0.08)
0.018
(0.34)
-0.003
(-0.06)
0.018
(0.35)
D_Rank 0 .173
(1.26)
0.085
(0.64)
0.098
(0.81)
0.174
(1.26)
0.085
(0.64)
0.099
(0.81)
D_Hitech -0.252***
(-2.59)
-0.165
(-1.42)
-0.132
(-1.01)
-0.251***
(-2.58)
-0.165
(-1.42)
-0.131
(-1.00)
Constant 0.202
(0.33)
-1.115*
(-1.89)
-0.354
(-1.01)
0.253
(0.41)
-1.105*
(-1.78)
-0.354
(-1.01)
39
Table 10 (Continued) Adjusted R2 0.0126 0.0201 0.0310 0.0145 0.0201 0.0311
Observation 675 654 675 675 654 675
Panel B: Regression results of AD_BHR24
LnAge -0.003
(-0.03)
-0.017
(-0.15)
LnAge *
D_IVC
0 .187
(1.09)
LnAsset 0.107
(1.55)
0 .100
(1.37)
LnAsset *
D_IVC
0.123
(0.66)
D_Market 0.545***
(4.50)
0.539***
(4.24)
D_Market *
D_IVC
0.073
(0.22)
D_IVC -0.091
(-0.44)
-0.061
(-0.32)
0.010
(0.05)
-0.520
(-1.16)
-1.109
(-0.72)
-0.028
(-0.202)
D_Non-VC -0.041
(-0.29)
-0.066
(-0.48)
-0.035
(-0.26)
0.044
(-0.31)
-0. 066
(-0.47)
-0.035
(-0.26)
LnOffersize -0.081
(-1.32)
-0.055
(-0.95)
-0.081
(-1.31)
-0.055
(-0.94)
D_Rank 0 .054
(0.35)
-0.068
(-0.41)
-0.031
(-0.21)
0.055
(0.36)
-0.068
(-0.41)
-0.031
(-0.21)
D_Hitech -0.357***
(-2.69)
-0.330***
(-2.62)
-0.228
(-1.59)
-0.356***
(-2.68)
-0.331***
(-2.63)
-0.226
(-1.58)
Constant 0.754
(1.21)
-0.708
(-1.23)
0.159
(0.38)
0.786
(1.23)
-0.634
(-1.05)
0.159
(0.38)
Adjusted R2 0.0151 0.0174 0.0342 0.0156 0.0177 0.0343
Observation 673 652 673 673 652 673
Panel C: Regression results of AD_BHR36
LnAge -0.054
(-0.55)
-0.064
(-0.62)
40
Table 10 (Continued) LnAge *
D_IVC
0.145
(0.69)
LnAsset 0.118
(1.55)
0.086
(1.20)
LnAsset *
D_IVC
0.477
(0.94)
D_Market 0.435***
(2.95)
0 .380***
(2.62)
D_Market *
D_IVC
0.624
(0.79)
D_IVC 0.105
(0.25)
0.172
(0.39)
0.206
(0.48)
-0.231
(-0.40)
-3.888
(-0.98)
-0.128
(-0.59)
D_Non-VC 0.008
(0.04)
-0.037
(-0.21)
0.024
(0.13)
0.006
(0.03)
-0.035
(-0.19)
0 .022
(0.12)
LnOffersize -0.138
(-1.57)
-0.115
(-1.38)
-0. 137
(-1.57)
-0. 112
(-1.35)
D_Rank -0.155
(-0.87)
-0.335
(-1.60)
-0.236
(-1.26)
-0.155
(-0.87)
-0.335
(-1.60)
-0.231
(-1.24)
D_Hitech -0.557***
(-2.97)
-0.507***
(-3.10)
-0.424**
(-2.54)
-0. 556***
(-2.96)
-0.513***
(-3.10)
-0.410**
(-2.49 )
Constant 1.378*
(1.74)
-0.686
(-1.11)
0.739
(1.27)
1.402*
(1.76)
-0.404
(-0.67)
0.742
(1.28)
Adjusted R2 0.0246 0.0245 0.0319 0.0248 0.0276 0.0334
Observation 665 646 665 665 646 665
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level
41
Table 11 2SLS regression results of long-term performance measures This table shows 2SLS regression results of long-term performance measures. The sample consists
of IVC- and FVC-backed IPOs. In the first regression, we conduct a logit regression in which the
dependent variable is the dummy variable that takes a value of one for IVC-IPOs and zero for
FVC-IPOs (D_Type). Specifically, we estimate the following equation. In the first step regression,
Year -3 data is used for all independent variables to address causality issues.
Prob (D_Type = 1) = a0 + b1LnAgei + b2LnAsseti + b3ROAi+b4D_Hitechi+b5Leveragei +
b6Liquidityi + ui
The presented figures are estimation results of the second step regression, in which long-term
performance measures are explained by the inverse-mills ratio estimated in the first step regression
(P_Type) and control variables. Panel A presents results for long-term operating performance and
Panel B is for long-term stock performance. T-statistics are computed by using robust standard
errors. See Table 1 for definition of variables.
Panel A: Regression results of long-term operating performance
Dependent
variable
(1) (2) (3)
Ch_AD_ROA1 Ch_AD_ROA2 Ch_AD_ROA3
Coefficient t-statistics Coefficient t-statistics Coefficient t-statistics
P_Type -0.365*** (-3.80) -0.348** (-2.30*) -0.351* (-1.87 )
D_Market 0.025 (1.60) 0.020 (1.08) 0.003 (0.14)
LnOffersize -0.003 (-0.32) -0.008 (-0.87) -0.010 (-0.96)
D_Rank -0.003 (-0.26) 0 .019 (1.42) 0.019 (1.41)
D_Hitech 0.001 (0.05) -0.003 (-0.22) -0.001 (-0.10)
Constant 0.032 (0.51) 0.060 (0.84) 0.093 (1.13)
Adjusted R2 0.0986 0.0793 0.0620
N 423 415 377
Panel B: Regression results of long-term stock performance
Dependent
variable
(1) (2) (3)
AD_BHR12 AD_BHR24 AD_BHR36
Coefficient t-statistics Coefficient t-statistics Coefficient t-statistics
P_Type -1.516*** (-3.18) -1.150* (-1.69) -1.3419 (-1.29)
42
Table 11 (Continued) D_Market 0.331** (2.51) 0.408** (2.43) 0 .42** (2.02)
LnOffersize 0.090 (0.96) -0.091 (-1.06) -0.174 (-1.50)
D_Rank 0.056 (0.41) -0.067 (-0.35) -0.303 (-1.31)
D_Hitech -0.167 (-1.24) -0.358** (-2.11) -0.403** (-2.04)
Constant -0.595 (-0.87) 0.704 (1.11) 1.358 (1.48)
Adjusted R2 0.0483 0.0481 0.0461 N 407 405 402
***: Significant at the 1% level **: Significant at the 5% level *: Significant at the 10% level